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Bayesian outlier detection in capital asset pricing model

机译:资本资产定价模型中的贝叶斯离群值检测

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We propose a novel Bayesian optimization procedure for outlier detection in the Capital Asset Pricing Model. We use a parametric product partition model to robustly estimate the systematic risk of an asset. We assume that the returns follow independent normal distributions and we impose a partition structure on the parameters of interest. The partition structure imposed on the parameters induces a corresponding clustering of the returns. We identify via an optimization procedure the partition that best separates standard observations from the atypical ones. The methodology is illustrated with reference to a real dataset, for which we also provide a microeconomic interpretation of the detected outliers.
机译:我们为资本资产定价模型中的异常值检测提出了一种新颖的贝叶斯优化程序。我们使用参数产品划分模型来稳健地估计资产的系统风险。我们假设收益率遵循独立的正态分布,并且对目标参数强加了分区结构。施加在参数上的分区结构引起收益的相应聚类。我们通过优化程序来确定最能区分标准观察结果和非典型观察结果的分区。参考实际数据集说明了该方法,为此我们还提供了对检测到的异常值的微观经济学解释。

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